DATR: Diffusion-based 3D Apple Tree Reconstruction Framework with Sparse-View
Tian Qiu, Alan Zoubi, Yiyuan Lin, Ruiming Du, Lailiang Cheng, and Yu Jiang

TL;DR
This paper introduces DATR, a diffusion-based 3D reconstruction framework for apple trees from sparse views, significantly improving accuracy and speed for agricultural digital twins.
Contribution
The study presents a novel two-stage framework combining diffusion models and large reconstruction models, trained on synthetic data, for accurate 3D apple tree reconstruction from sparse views.
Findings
Outperforms existing 3D reconstruction methods on field and synthetic datasets.
Achieves domain-trait estimation comparable to laser scanners.
Speeds up reconstruction by approximately 360 times.
Abstract
Digital twin applications offered transformative potential by enabling real-time monitoring and robotic simulation through accurate virtual replicas of physical assets. The key to these systems is 3D reconstruction with high geometrical fidelity. However, existing methods struggled under field conditions, especially with sparse and occluded views. This study developed a two-stage framework (DATR) for the reconstruction of apple trees from sparse views. The first stage leverages onboard sensors and foundation models to semi-automatically generate tree masks from complex field images. Tree masks are used to filter out background information in multi-modal data for the single-image-to-3D reconstruction at the second stage. This stage consists of a diffusion model and a large reconstruction model for respective multi view and implicit neural field generation. The training of the diffusion…
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